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Customer Baseline Load Bias Estimation Method of Incentive-Based Demand Response based on CONTROL Group Matching

机译:基于对照组匹配的基于激励性需求响应的客户基线负荷估计方法

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Accurate customer baseline load (CBL) estimation is of great significance for demand response (DR) performance evaluation and financial settlement of DR participation rewards. However, due to customers' random electricity consumption behaviors, the CBL estimation errors are unavoidable. Bias is usually used to quantify the CBL estimation error, which provides the basis for DR program operators to select the most appropriate CBL model and optimize the DR program. Unfortunately, it is impossible to meter the actual bias in practice because the actual CBL would never exist once the DR program is implemented. In this paper, a CONTROL group matching based approach is proposed to estimate the CBL bias. All customers are divided into DR and CONTROL group, including DR participants and non-DR customers, respectively. The basic idea is that use the bias information of those CONTROL customers who don't participate DR program but show similar bias distribution with the DR group in the historical days prior to DR event day to estimate the bias of DR group on the DR event day. A case study using a dataset of more than 4000 residential customers shows that the proposed approach has better overall performance than other benchmark methods.
机译:准确的客户基线负荷(CBL)估计对于需求响应(DR)绩效评估和博士参与奖励的财务解决方案具有重要意义。然而,由于客户随机电力消耗行为,CBL估计误差是不可避免的。偏差通常用于量化CBL估计误差,该误差为DR程序运算符选择最合适的CBL模型并优化DR程序。不幸的是,在实践中估计实际偏差是不可能的,因为一旦实施了DR程序,实际CBL永远不会存在。在本文中,提出了一种基于对照组的方法来估计CBL偏置。所有客户分别分为博士和控制组,分别包括参与者和非博士客户。基本思想是使用那些不参与DR计划的控制客户的偏见信息,但在博士事项日期前的历史日之前与DR组显示类似的偏见分布,以估算博士博士活动日博士的偏见。使用超过4000多个住宅客户的数据集的案例研究表明,该方法具有比其他基准方法更好的整体性能。

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